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Combining the advice of experts with randomized boosting for robust pattern recognition

机译:将专家意见与随机增强相结合,以实现可靠的模式识别

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We have developed an algorithm, called ShareBoost, for combining mulitple classifiers from multiple information sources. The algorithm offer a number of advantages, such as increased confidence in decision-making, resulting from combined complementary data, good performance against noise, and the ability to exploit interplay between sensor subspaces.We have also developed a randomized version of ShareBoost, called rShare-Boost, by casting ShareBoost within an adversarial multi-armed bandit framework. This in turn allows us to show rShareBoost is efficient and convergent. Both algorithms have shown promise in a number of applications. The hallmark of these algorithms is a set of strategies for mining and exploiting the most informative sensor sources for a given situation. These strategies are computations performed by the algorithms. In this paper, we propose to consider strategies as advice given to an algorithm by “experts” or “Oracle.” In the context of pattern recognition, there can be several pattern recognition strategies. Each strategy makes different assumptions regarding the fidelity of each sensor source and uses different data to arrive at its estimates. Each strategy may place different trust in a sensor at different times, and each may be better in different situations. In this paper, we introduce a novel algorithm for combining the advice of the experts to achieve robust pattern recognition performance. We show that with high probability the algorithm seeks out the advice of the experts from decision relevant information sources for making optimal prediction. Finally, we provide experimental results using face and infrared image data that corroborate our theoretical analysis.
机译:我们已经开发了一种称为ShareBoost的算法,用于组合来自多个信息源的多个分类器。该算法具有许多优势,例如由于合并的互补数据,对噪声的良好性能以及利用传感器子空间之间的相互作用的能力而提高了决策的信心。我们还开发了一种随机版本的ShareBoost,称为rShare -Boost,通过在对抗性多武装匪徒框架内投放ShareBoost。反过来,这使我们可以证明rShareBoost是高效且收敛的。两种算法在许多应用中都显示出了希望。这些算法的标志是针对给定情况挖掘和利用最有用的传感器源的一组策略。这些策略是由算法执行的计算。在本文中,我们建议将策略视为“专家”或“ Oracle”对算法的建议。在模式识别的背景下,可以有几种模式识别策略。每种策略对每个传感器源的保真度做出不同的假设,并使用不同的数据得出其估计值。每种策略可能在不同时间对传感器放置不同的信任,并且每种策略在不同情况下可能会更好。在本文中,我们介绍了一种新颖的算法,可以结合专家的意见来实现鲁棒的模式识别性能。我们表明,该算法极有可能从决策相关信息源中寻求专家的建议,以进行最佳预测。最后,我们使用面部和红外图像数据提供实验结果,从而证实了我们的理论分析。

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